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Negation scope detection in sentiment analysis: Decision support for news-driven trading

机译:情感分析中的否定范围检测:新闻驱动交易的决策支持

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Decision support for financial news using natural language processing requires robust methods that process all sentences correctly, including those that are negated. To predict the corresponding negation scope, related literature commonly utilizes rule-based algorithms and generative probabilistic models. In contrast, we propose the use of a tailored reinforcement learning method, since it can conquer learning task of arbitrary length. We then perform a thorough comparison with a two-pronged evaluation. First, we compare the predictive performance using a manually-labeled dataset. Here, reinforcement learning outperforms common approaches from the related literature, leading to a balanced classification accuracy of up to 70.17%. Second, we examine how detecting negation scopes can improve the accuracy of sentiment analysis for financial news, leading to an improvement of up to 10.63% in the correlation between news sentiment and stock market returns. This reveals negation scope detection as a crucial leverage in decision support from sentiment. (C) 2016 Elsevier B.V. All rights reserved.
机译:使用自然语言处理对金融新闻的决策支持需要强大的方法来正确处理所有句子,包括被否定的句子。为了预测相应的否定范围,相关文献通常使用基于规则的算法和生成概率模型。相反,我们建议使用量身定制的强化学习方法,因为它可以征服任意长度的学习任务。然后,我们通过两方面的评估进行全面比较。首先,我们使用手动标记的数据集比较预测效果。在这里,强化学习的表现优于相关文献中的常用方法,从而使分类准确率达到了70.17%。其次,我们研究了检测否定范围如何提高金融新闻情绪分析的准确性,从而使新闻情绪与股市收益之间的相关性提高多达10.63%。这表明否定范围检测是情感决策支持中的关键手段。 (C)2016 Elsevier B.V.保留所有权利。

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